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SoK: On the Offensive Potential of AI

Authors :
Schröer, Saskia Laura
Apruzzese, Giovanni
Human, Soheil
Laskov, Pavel
Anderson, Hyrum S.
Bernroider, Edward W. N.
Fass, Aurore
Nassi, Ben
Rimmer, Vera
Roli, Fabio
Salam, Samer
Shen, Ashley
Sunyaev, Ali
Wadwha-Brown, Tim
Wagner, Isabel
Wang, Gang
Publication Year :
2024

Abstract

Our society increasingly benefits from Artificial Intelligence (AI). Unfortunately, more and more evidence shows that AI is also used for offensive purposes. Prior works have revealed various examples of use cases in which the deployment of AI can lead to violation of security and privacy objectives. No extant work, however, has been able to draw a holistic picture of the offensive potential of AI. In this SoK paper we seek to lay the ground for a systematic analysis of the heterogeneous capabilities of offensive AI. In particular we (i) account for AI risks to both humans and systems while (ii) consolidating and distilling knowledge from academic literature, expert opinions, industrial venues, as well as laypeople -- all of which being valuable sources of information on offensive AI. To enable alignment of such diverse sources of knowledge, we devise a common set of criteria reflecting essential technological factors related to offensive AI. With the help of such criteria, we systematically analyze: 95 research papers; 38 InfoSec briefings (from, e.g., BlackHat); the responses of a user study (N=549) entailing individuals with diverse backgrounds and expertise; and the opinion of 12 experts. Our contributions not only reveal concerning ways (some of which overlooked by prior work) in which AI can be offensively used today, but also represent a foothold to address this threat in the years to come.<br />Comment: Systemization of Knowledge (SoK) paper. Accepted to the 3rd IEEE Conference on Secure and Trustworthy Machine Learning (SaTML'25)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.18442
Document Type :
Working Paper